Title of article :
Multiply-rooted multiscale models for large-scale estimation
Author/Authors :
Fieguth، نويسنده , , P.W.
، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Divide-and-conquer or multiscale techniques have
become popular for solving large statistical estimation problems.
The methods rely on defining a state which conditionally
decorrelates the large problem into multiple subproblems, each
more straightforward than the original. However this step cannot
be carried out for asymptotically large problems since the dimension
of the state grows without bound, leading to problems
of computational complexity and numerical stability. In this
paper, we propose a new approach to hierarchical estimation in
which the conditional decorrelation of arbitrarily large regions
is avoided, and the problem is instead addressed piece-by-piece.
The approach possesses promising attributes: it is not a local
method—the estimate at every point is based on all measurements;
it is numerically stable for problems of arbitrary size; and the
approach retains the benefits of the multiscale framework on
which it is based: a broad class of statistical models, a stochastic
realization theory, an algorithm to calculate statistical likelihoods,
and the ability to fuse local and nonlocal measurements.
Keywords :
Estimation , multiscale methods , remotesensing. , interpolation
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING